Dynamic simulation of gas turbines via feature similarity-based transfer learning
Dengji ZHOU, Jiarui HAO, Dawen HUANG, Xingyun JIA, Huisheng ZHANG
Dynamic simulation of gas turbines via feature similarity-based transfer learning
Since gas turbine plays a key role in electricity power generating, the requirements on the safety and reliability of this classical thermal system are becoming gradually strict. With a large amount of renewable energy being integrated into the power grid, the request of deep peak load regulation for satisfying the varying demand of users and maintaining the stability of the whole power grid leads to more unstable working conditions of gas turbines. The startup, shutdown, and load fluctuation are dominating the operating condition of gas turbines. Hence simulating and analyzing the dynamic behavior of the engines under such instable working conditions are important in improving their design, operation, and maintenance. However, conventional dynamic simulation methods based on the physic differential equations is unable to tackle the uncertainty and noise when faced with variant real-world operations. Although data-driven simulating methods, to some extent, can mitigate the problem, it is impossible to perform simulations with insufficient data. To tackle the issue, a novel transfer learning framework is proposed to transfer the knowledge from the physics equation domain to the real-world application domain to compensate for the lack of data. A strong dynamic operating data set with steep slope signals is created based on physics equations and then a feature similarity-based learning model with an encoder and a decoder is built and trained to achieve feature adaptive knowledge transferring. The simulation accuracy is significantly increased by 24.6% and the predicting error reduced by 63.6% compared with the baseline model. Moreover, compared with the other classical transfer learning modes, the method proposed has the best simulating performance on field testing data set. Furthermore, the effect study on the hyper parameters indicates that the method proposed is able to adaptively balance the weight of learning knowledge from the physical theory domain or from the real-world operation domain.
gas turbine / dynamic simulation / data-driven / transfer learning / feature similarity
[1] |
Zhou D J, Wei T T, Ma S X,
CrossRef
Google scholar
|
[2] |
International Energy Agency. Electricity statistics. 2018, available at website of International Energy Agency
|
[3] |
Wang H L, He J K. China’s pre-2020 CO2 emission reduction potential and its influence. Frontiers in Energy, 2019, 13(3): 571–578
CrossRef
Google scholar
|
[4] |
Chong Z R, Yang S H B, Babu P,
CrossRef
Google scholar
|
[5] |
Zhou D J, Wei T T, Huang D W, et al
CrossRef
Google scholar
|
[6] |
Ling Z, Yang X, Li Z L. Optimal dispatch of multi energy system using power-to-gas technology considering flexible load on user side. Frontiers in Energy, 2018, 12(4): 569–581
CrossRef
Google scholar
|
[7] |
Li J, Liu G D, Zhang S. Smoothing ramp events in wind farm based on dynamic programming in energy internet. Frontiers in Energy, 2018, 12(4): 550–559
CrossRef
Google scholar
|
[8] |
Zhou D J, Yu Z Q, Zhang H S,
CrossRef
Google scholar
|
[9] |
Tsoutsanis E, Meskin N, Benammar M, et al
CrossRef
Google scholar
|
[10] |
Gao D W, Wang Q, Zhang F, et al
CrossRef
Google scholar
|
[11] |
Zeng D T, Zhou D J, Tan C Q, et al
CrossRef
Google scholar
|
[12] |
Wang C, Li Y G, Yang B Y. Transient performance simulation of aircraft engine integrated with fuel and control systems. Applied Thermal Engineering, 2017, 114: 1029–1037
CrossRef
Google scholar
|
[13] |
Chaibakhsh A, Amirkhani S. A simulation model for transient behaviour of heavy-duty gas turbines. Applied Thermal Engineering, 2018, 132(3): 115–127
CrossRef
Google scholar
|
[14] |
Xie Z W, Su M, Weng S L. Extensible object model for gas turbine engine simulation. Applied Thermal Engineering, 2001, 21(1): 111–118
CrossRef
Google scholar
|
[15] |
Tsoutsanis E, Meskin N, Benammar M,
|
[16] |
Wang H, Li X S, Ren X, et al
CrossRef
Google scholar
|
[17] |
Badami M, Ferrero M G, Portoraro A. Dynamic parsimonious model and experimental validation of a gas microturbine at part-load conditions. Applied Thermal Engineering, 2015, 75(1): 14–23
CrossRef
Google scholar
|
[18] |
Mehrpanahi A, Payganeh G, Arbabtafti M. Dynamic modeling of an industrial gas turbine in loading and unloading conditions using a gray box method. Energy, 2017, 120(2): 1012–1024
CrossRef
Google scholar
|
[19] |
Asgari H, Chen X Q, Morini M, et al
CrossRef
Google scholar
|
[20] |
Nikpey H, Assadi M, Breuhaus P. Development of an optimized artificial neural network model for combined heat and power micro gas turbines. Applied Energy, 2013, 108(8): 137–148
CrossRef
Google scholar
|
[21] |
Tsoutsanis E, Meskin N. Derivative-driven window-based regression method for gas turbine performance prognostics. Energy, 2017, 128(6): 302–311
CrossRef
Google scholar
|
[22] |
Baklacioglu T, Turan O, Aydin H. Dynamic modeling of exergy efficiency of turboprop engine components using hybrid genetic algorithm-artificial neural networks. Energy, 2015, 86(6): 709–721
CrossRef
Google scholar
|
[23] |
Weng S L, Gu C H, Weng Y W. Energy internet technology: modeling, optimization and dispatch of integrated energy systems. Frontiers in Energy, 2018, 12(4): 481–483
CrossRef
Google scholar
|
[24] |
Zhong S S, Fu S, Lin L. A novel gas turbine fault diagnosis method based on transfer learning with CNN. Measurement, 2019, 137: 435–453
CrossRef
Google scholar
|
[25] |
Zhou D J, Yao Q B, Wu H, et al
CrossRef
Google scholar
|
[26] |
Tang S X, Tang H L, Chen M. Transfer-learning based gas path analysis method for gas turbines. Applied Thermal Engineering, 2019, 155: 1–13
CrossRef
Google scholar
|
[27] |
Klenk M, Forbus K. Analogical model formulation for transfer learning in AP Physics. Artificial Intelligence, 2009, 173(18): 1615–1638
CrossRef
Google scholar
|
[28] |
Jiang Z H, Lee Y M. Deep transfer learning for thermal dynamics modeling in smart buildings. In: 2019 IEEE International Conference on Big Data (Big Data), Los Angeles, CA, USA, 2019: 2033–2037
|
[29] |
Yao Y, Doretto G. Boosting for transfer learning with multiple sources. In: 2010 IEEE Computer Society Conference on Computer Vision and Pattern Recognition, San Francisco, CA, USA, 2010: 1855–1862
|
[30] |
Zhou D J, Yu Z Q, Zhang H S,
CrossRef
Google scholar
|
[31] |
Ma S X, Sun S N, Wu H, et al
CrossRef
Google scholar
|
[32] |
Little W A. The existence of persistent states in the brain. Mathematical Biosciences, 1974, 19(1–2): 101–120
CrossRef
Google scholar
|
[33] |
Gers F A, Schmidhuber J, Cummins F. Learning to forget: continual prediction with LSTM. In: 9th International Conference on Artificial Neural Networks, Technical report, 1999
|
[34] |
Pan S J, Yang Q. A survey on transfer learning. IEEE Transactions on Knowledge and Data Engineering, 2010, 22(10): 1345–1359
CrossRef
Google scholar
|
[35] |
Zhuang F Z, Qi Z Y, Duan K Y,
|
[36] |
Rumelhart D E, Hinton G E, Williams R J. Learning internal representations by error-propagation. Parallel Distributed Processing: Explorations in the Microstructure of Cognition, 1986, 1: 318–362
|
[37] |
Kingma D P, Ba J. Adam: a method for stochastic optimization. arXiv preprint, 2014: 1412.6980
|
/
〈 | 〉 |